基于mri多输入CNN模型的甲状腺癌计算机辅助诊断系统

A. Naglah, F. Khalifa, R. Khaled, A. Razek, A. El-Baz
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引用次数: 11

摘要

实现甲状腺结节的早期检测和分类有助于预测癌症负担,并指导该医疗状况的适当临床途径。我们提出了一种新的基于多模态mri的计算机辅助诊断(CAD)系统,该系统使用深度学习架构检测甲状腺癌结节。特别是,我们的系统采用多输入卷积神经网络(CNN)来进行两种MRI模式的融合:扩散加权图像(DWI)和表观扩散系数(ADC)图。我们的系统的主要贡献有三个方面。即:(1)首次使用CNN将甲状腺DWI与ADC融合进行分类;(2)对DWI和ADC图像分别进行独立卷积处理,提高了检测甲状腺结节深部纹理模式的可能性;(3)它可以在每个输入中添加额外的通道,并有可能与额外的MRI模式和其他成像技术集成。我们将我们的系统与其他融合方法以及其他使用手工制作功能的机器学习(ML)框架进行了比较。本系统的诊断准确率为0.88,精密度为0.82,召回率为0.82,是其中性能最高的系统。
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Thyroid Cancer Computer-Aided Diagnosis System using MRI-Based Multi-Input CNN Model
Achieving early detection and classification of thyroid nodules contributes to the prediction of cancer burdening and also steers appropriate clinical pathways of that medical condition. We propose a novel multimodal MRI-based computer-aided diagnosis (CAD) system that detects cancerous thyroid nodules using a deep-learning architecture. Particularly, our system is built with a multi-input convolutional neural network (CNN) to perform fusion of two MRI modalities: the diffusion weighted image (DWI) and apparent diffusion coefficient (ADC) map. The main contribution of our system is three-folded. Namely, (1) it is the first system to fuse thyroid DWI and ADC using CNN for classification purpose; (2) it enables independent convolutions process for each of DWI and ADC images, which can increase the likelihood of detecting deep texture patterns in thyroid nodules; and (3) it enables adding extra channels in each input with the possibility to integrate with additional MRI modalities and other imaging technologies. We compared our system to other fusion methods and also to other machine learning (ML) frameworks that use hand-crafted features. Our system achieved the highest performance among them with diagnostic accuracy of 0.88, precision of 0.82, and recall of 0.82.
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